Instance-Aware Coherent Video Style Transfer for Chinese Ink Wash Painting

Hao Liang, Shuai Yang, Wenjing Wang, Jiaying Liu
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引用次数: 3

Abstract

Recent researches have made remarkable achievements in fast video style transfer based on western paintings. However, due to the inherent different drawing techniques and aesthetic expressions of Chinese ink wash painting, existing methods either achieve poor temporal consistency or fail to transfer the key freehand brushstroke characteristics of Chinese ink wash painting. In this paper, we present a novel video style transfer framework for Chinese ink wash paintings. The two key ideas are a multi-frame fusion for temporal coherence and an instance-aware style transfer. The frame reordering and stylization based on reference frame fusion are proposed to improve temporal consistency. Meanwhile, the proposed method is able to adaptively leave the white spaces in the background and to select proper scales to extract features and depict the foreground subject by leveraging instance segmentation. Experimental results demonstrate the superiority of the proposed method over state-of-the-art style transfer methods in terms of both temporal coherence and visual quality. Our project website is available at https://oblivioussy.github.io/InkVideo/.
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基于实例的中国水墨画连贯视频风格转换
近年来,基于西方绘画的视频风格快速转换研究取得了显著成果。然而,由于中国水墨画固有的不同的绘画技巧和审美表现,现有的方法要么时间一致性差,要么不能转移中国水墨画的关键写意特征。在本文中,我们提出了一种新的中国水墨画视频风格转换框架。两个关键思想是时间一致性的多帧融合和实例感知风格转移。提出了基于参考帧融合的帧重排序和程式化方法来提高时间一致性。同时,该方法能够自适应地在背景中留下空白,并利用实例分割来选择合适的尺度提取特征和描绘前景主体。实验结果表明,该方法在时间一致性和视觉质量方面都优于目前最先进的风格迁移方法。我们的项目网站是https://oblivioussy.github.io/InkVideo/。
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